Databricks Certified Machine Learning Associate Exam Databricks-Machine-Learning-Associate Question # 10 Topic 2 Discussion

Databricks Certified Machine Learning Associate Exam Databricks-Machine-Learning-Associate Question # 10 Topic 2 Discussion

Databricks-Machine-Learning-Associate Exam Topic 2 Question 10 Discussion:
Question #: 10
Topic #: 2

A data scientist is performing hyperparameter tuning using an iterative optimization algorithm. Each evaluation of unique hyperparameter values is being trained on a single compute node. They are performing eight total evaluations across eight total compute nodes. While the accuracy of the model does vary over the eight evaluations, they notice there is no trend of improvement in the accuracy. The data scientist believes this is due to the parallelization of the tuning process.

Which change could the data scientist make to improve their model accuracy over the course of their tuning process?


A.

Change the number of compute nodes to be half or less than half of the number of evaluations.


B.

Change the number of compute nodes and the number of evaluations to be much larger but equal.


C.

Change the iterative optimization algorithm used to facilitate the tuning process.


D.

Change the number of compute nodes to be double or more than double the number of evaluations.


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